Litcius/Paper detail

Development of a Privacy-Preserving UAV System With Deep Learning-Based Face Anonymization

Harim Lee, Myeung Un Kim, Yeongjun Kim, Hyeonsu Lyu, Hyun Jong Yang

2021IEEE Access22 citationsDOIOpen Access PDF

Abstract

In this paper, we develop a privacy-preserving UAV system that does not infringe on the privacy of people in the videos taken by UAVs. Instead of blurring or masking the face parts of the videos, we want to exquisitely modify only the face parts so that the people in the modified videos still look like humans, but they become anonymous. Doing so, the semantic information of the videos can be preserved even with the anonymization. Specifically, based on the latest generative adversarial network architecture, we propose a deep learning-based face-anonymization scheme so that each modified face part looks like the face of a person who does not actually exist. The trained face-anonymizer is then mounted on the UAV system we have implemented. Through experiments, we confirm that the developed privacy-preserving UAV system anonymizes UAV’s first-person videos so that the people in the video are not recognized as anyone in the dataset used. In addition, we show that even with such anonymized videos, the perception performance required for performing UAV’s essential functions such as simultaneous localization and mapping is not degraded.

Topics & Concepts

Computer scienceFace (sociological concept)Scheme (mathematics)Artificial intelligenceDeep learningAdversarial systemMasking (illustration)Computer visionFacial recognition systemFace detectionFeature extractionSociologySocial scienceMathematical analysisMathematicsVisual artsArtFace recognition and analysisGenerative Adversarial Networks and Image SynthesisVideo Surveillance and Tracking Methods